Malay Tweets: Discovering Mental Health Situation during COVID-19 Pandemic in Malaysia

Ramadani Anwar Sabaruddin, Suhaila Saee
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引用次数: 2

Abstract

During the unprecedented of COVID-19 pandemic, numbers of research had been conducted on mental health in social media worldwide. Past research has shown interest in Twitter sentiment analysis by using keywords, geographical area, and range of ages. Up to the authors’ analysis, there is no research conducted on mental health using keyword in the case of Malaysia. A Malay Tweet dataset was built for analysing mental health tweets during the first Movement Control Order period using unique keywords. Machine learning algorithms namely, Naïve Bayes classifier and Support Vector Machine were used to predict the sentiment of tweets. The classifiers were evaluated using 10-fold cross-validation, accuracy, precision, and F1-score. The data then visualized in charts and WordCloud. The results shows that Support Vector Machine performed better than Naïve Bayes classifier for both test set and 10-fold cross-validation in terms of performances in n-gram TF-IDF. The visualized data could provide insights to the authority pertaining the mental health issues, in which it relates to local news and situations during the periods.
马来语推文:在马来西亚COVID-19大流行期间发现心理健康状况
在前所未有的COVID-19大流行期间,世界各地对社交媒体上的心理健康进行了大量研究。过去的研究表明,人们对使用关键词、地理区域和年龄范围进行Twitter情绪分析很感兴趣。根据作者的分析,在马来西亚的情况下,没有使用关键词对心理健康进行研究。马来语推文数据集用于分析第一个运动控制令期间使用唯一关键字的心理健康推文。使用机器学习算法Naïve贝叶斯分类器和支持向量机来预测推文的情绪。分类器使用10倍交叉验证、准确性、精密度和f1评分进行评估。然后将数据以图表和WordCloud的形式可视化。结果表明,在n-gram TF-IDF的性能方面,支持向量机在测试集和10倍交叉验证方面都优于Naïve贝叶斯分类器。可视化数据可以为当局提供有关心理健康问题的见解,其中涉及到当地新闻和期间的情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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